---
title: Overview
---

## How Text Search Works

Text search in ParadeDB, like Elasticsearch and most search engines, is centered around the concept of **token matching**.

Token matching consists of two steps. First, at indexing time, text is processed by a tokenizer, which breaks input into discrete units called **tokens** or
**terms**. For example, the [default](/documentation/indexing/) tokenizer splits the text `Sleek running shoes` into the tokens `sleek`, `running`, and `shoes`.

Second, at query time, the query engine looks for token matches based on the specified query and query type. Some common query types include:

- [Match](/v2/full-text/match): Matches documents containing any or all query tokens
- [Phrase](/v2/full-text/phrase): Matches documents where all tokens appear in the same order as the query
- [Term](/v2/full-text/term): Matches documents containing an exact token
- ...and many more [advanced](/v2/query-builder/overview) query types

## Not Substring Matching

While ParadeDB supports substring matching via [regex](/v2/query-builder/term/regex) queries, it's important to note that token matching is **not** the
same as substring matching.

Token matching is a much more versatile and powerful technique. It enables relevance scoring, language-specific analysis, typo tolerance, and more expressive query types — capabilities that go far beyond simply looking for a sequence of characters.

For example, a substring search for `run` might miss `running`, while a token-based match query will correctly match if the tokenizer includes [stemming](documentation/indexing/token_filters#stemmer). This makes token matching a fit for search and discovery use cases where users expect flexible, intelligent results.

## Similarity Search

Text search is different than similarity search, also known as vector search. Whereas text search matches based on token matches, similarity search
matches based on semantic meaning.

ParadeDB currently does not build its own extensions for similarity search. Most ParadeDB users install [pgvector](https://github.com/pgvector/pgvector), the
Postgres extension for vector search, for this use case.

We have tentative long-term plans in our [roadmap](/welcome/roadmap#vector-search-improvements) to make improvements to Postgres' vector search.
If this is useful to you, please [reach out](mailto:support@paradedb.com).
